SOC-PHLGCOMP-PHMar 4, 2025

Machine Learning-based Regional Cooling Demand Prediction with Optimised Dataset Partitioning

arXiv:2503.05813v12 citationsh-index: 2Energy and Buildings
Originality Synthesis-oriented
AI Analysis

It addresses energy management challenges for cooling demand in specific regions like London, but is incremental as it applies existing methods to a new dataset with optimizations.

This study tackled the problem of predicting cooling demand in urban domestic buildings in the UK by developing a framework using LSTM and GRU networks with optimized data partitioning and Bayesian hyperparameter tuning, achieving an RMSE of 2.22% and R-squared of 0.9386 on test data.

In the context of global warming, even relatively cooler countries like the UK are experiencing a rise in cooling demand, particularly in southern regions such as London. This growing demand, especially during the summer months, presents significant challenges for energy management systems. Accurately predicting cooling demand in urban domestic buildings is essential for maintaining energy efficiency. This study introduces a generalised framework for developing high-resolution Long Short-Term Memory (LSTM) and Gated Recurrent Unit (GRU) networks using physical model-based summer cooling demand data. To maximise the predictive capability and generalisation ability of the models under limited data scenarios, four distinct data partitioning strategies were implemented, including the extrapolation, month-based interpolation, global interpolation, and day-based interpolation. Bayesian Optimisation (BO) was then applied to fine-tune the hyper-parameters, substantially improving the framework predictive accuracy. Results show that the day-based interpolation GRU model demonstrated the best performance due to its ability to retain both the data randomness and the time sequence continuity characteristics. This optimal model achieves a Root Mean Squared Error (RMSE) of 2.22%, a Mean Absolute Error (MAE) of 0.87%, and a coefficient of determination (R square) of 0.9386 on the test set. The generalisation ability of this framework was further evaluated by forecasting.

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